基于门控循环卷积神经网络的多无人机编队轨迹跟踪预测

Ziyuan Ma, Huajun Gong, Xinhua Wang
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引用次数: 0

摘要

无人机是欠驱动和强耦合非线性系统的典型代表,以其高速度、高机动性和高续航能力而闻名,是国防和防空领域的重要研究热点。然而,由于其对外部干扰的敏感性和飞行环境的固有复杂性,控制固定翼无人机提出了挑战。为了解决这些挑战,本研究采用了一种基于门控循环卷积神经网络(GCCNN)架构的新方法。本研究利用GCCNN的独特结构,成功地解决了固定翼无人机的四个控制输入信号,并采用门控卷积神经网络进行轨迹控制和预测。循环卷积的利用具有明显的优势,提高了无人机轨迹预测的精度,提高了整体轨迹预测的有效性。
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Trajectory Tracking Prediction of Multiple-UAVs Formation Based on Gated Cyclic Convolution Neural Network
Unmanned Aerial Vehicles (UAVs) represent a typical example of underactuated and strongly coupled nonlinear systems, renowned for their high speed, maneuverability, and endurance, making them a prominent research focus in the fields of national defense and air defense. However, controlling a fixed-wing UAV poses challenges due to its susceptibility to external interference and the inherent complexity of the flight environment. To address these challenges, this study adopts a novel approach based on the gated cyclic convolutional neural network (GCCNN) architecture. By leveraging the unique structure of GCCNN, this research successfully solves the four control input signals of a fixed-wing UAV and employs the gated convolutional neural network for trajectory control and prediction. The utilization of cyclic convolution offers distinct advantages, enhancing the accuracy of UAV trajectory prediction and improving the overall trajectory prediction effectiveness.
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